2型糖尿病长期并发症的患者水平中国糖尿病结局模型的建立和验证:香港糖尿病登记的应用

IF 14.8 1区 医学 Q1 ENDOCRINOLOGY & METABOLISM
Diabetes Care Pub Date : 2025-02-25 DOI:10.2337/dca24-0069
Eric S.H. Lau, Andrea O.Y. Luk, Lee-Ling Lim, Hongjiang Wu, Aimin Yang, Alice P.S. Kong, Ronald C.W. Ma, Risa Ozaki, Elaine Y.K. Chow, Chiu-Chi Tsang, Chun-Kwun O, Amy Fu, Edward W. Gregg, Philip Clarke, Wing-Yee So, Juliana N.M. Lui, Juliana C.N. Chan
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引用次数: 0

摘要

目的:主要在西方人群中开发的患者级模拟模型,捕捉危险因素和并发症之间复杂的相互作用,以预测新治疗的长期有效性和成本效益,并确定个性化护理的高危亚群。然而,结果的发生率因种族和地区而有显著差异。我们使用高质量的患者水平登记数据来开发中国糖尿病结局模型(CDOM),用于预测2型糖尿病(T2D)的发生和复发事件。研究设计和方法CDOM采用前瞻性香港糖尿病登记(HKDR)队列(n = 21,453;中位随访时间7.9年;166433()。该研究通过一项在香港公立糖尿病中心和社区诊所就诊的中国t2dm患者的回顾性全地域队列进行外部验证(n = 176,120;随访时间7.2年;953523()。结果经内部(C-statistic = 0.740-0.941)和外部(C-statistic = 0.758-0.932)验证,CDOM预测首次事件和复发事件的效果满意。癌症的c统计值分别为0.664和0.661。经亚组分析,标配后的内部验证(C-statistic = 0.632-0.953)和外部验证(C-statistic = 0.598-0.953)结果一致。结论:基于长期随访的综合登记数据开发的CDOM是预测中国T2D患者长期预后的有力工具。该模型能够识别患者亚组,以增强研究设计和开发量身定制的新治疗策略,为政策提供信息,并指导实践,以提高糖尿病护理的成本效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development and Validation of the Patient-Level Chinese Diabetes Outcome Model on Long-term Complications in Type 2 Diabetes: An Application of the Hong Kong Diabetes Register
OBJECTIVE Patient-level simulation models, mainly developed in Western populations, capture complex interactions between risk factors and complications to predict the long-term effectiveness and cost-effectiveness of novel treatments and identify high-risk subgroups for personalized care. However, incidence of outcomes varies significantly by ethnicity and region. We used high-quality, patient-level register data to develop the Chinese Diabetes Outcomes Model (CDOM) for predicting incident and recurrent events in type 2 diabetes (T2D). RESEARCH DESIGN AND METHODS The CDOM was developed using the prospective Hong Kong Diabetes Register (HKDR) cohort (n = 21,453; median follow-up duration, 7.9 years; 166,433 patient-years). It was externally validated with a retrospective territory-wide cohort of Chinese patients with T2D attending Hong Kong publicly funded diabetes centers and community clinics (n = 176,120; follow-up duration, 7.2 years; 953,523 patient-years). RESULTS The CDOM predicted first and recurrent events with satisfactory performance during internal (C-statistic = 0.740–0.941) and external (C-statistic = 0.758–0.932) validation after calibration. The respective C-statistic values for cancer were 0.664 and 0.661. Subgroup analysis showed consistent performance during internal (C-statistic = 0.632–0.953) and external (C-statistic = 0.598–0.953) validation after calibration. CONCLUSIONS The CDOM, developed using comprehensive register data with long-term follow-up, is a robust tool for predicting long-term outcomes in Chinese patients with T2D. The model enables the identification of patient subgroups to augment study design and develop tailored novel treatment strategies, inform policy, and guide practice to improve cost-effectiveness of diabetes care.
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来源期刊
Diabetes Care
Diabetes Care 医学-内分泌学与代谢
CiteScore
27.80
自引率
4.90%
发文量
449
审稿时长
1 months
期刊介绍: The journal's overarching mission can be captured by the simple word "Care," reflecting its commitment to enhancing patient well-being. Diabetes Care aims to support better patient care by addressing the comprehensive needs of healthcare professionals dedicated to managing diabetes. Diabetes Care serves as a valuable resource for healthcare practitioners, aiming to advance knowledge, foster research, and improve diabetes management. The journal publishes original research across various categories, including Clinical Care, Education, Nutrition, Psychosocial Research, Epidemiology, Health Services Research, Emerging Treatments and Technologies, Pathophysiology, Complications, and Cardiovascular and Metabolic Risk. Additionally, Diabetes Care features ADA statements, consensus reports, review articles, letters to the editor, and health/medical news, appealing to a diverse audience of physicians, researchers, psychologists, educators, and other healthcare professionals.
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